Abstract Rolling bearing fault diagnosis is essential for ensuring the reliability of rotating machinery. Traditional deep learning methods struggle due to the lack of labeled data and domain shift across operating conditions. To address this, a Digital Twin-driven Zero-Shot Transfer Diagnosis (DTD-ZSTD) method is proposed, integrating virtual–reality feature fusion and triple-model transfer, enabling accurate diagnosis without physical samples. First, a lumped parameter model (LPM) and a finite element (FE) model are developed to generate virtual vibration responses under various fault scenarios. To mitigate the distribution discrepancy between virtual and physical data, a Wasserstein Generative Adversarial Network (WGAN) is employed to fuse virtual features with real-world noise and operational characteristics, forming the Digital Twin-driven Virtual-Reality Feature Integration (DTd-VRFI) framework. Second, the Digital Twin-assisted Triple-Model Transfer (DTa-TMT) framework is proposed, enabling sequential knowledge transfer from the lumped parameter domain to the FE model domain and then to the physical domain. This hierarchical transfer mechanism enhances model generalization and noise resilience by aligning multi-level feature representations across different domains. Experimental validation using data from physical test rigs demonstrates that the DTd-ZSTD method achieves an average diagnostic accuracy exceeding 80% in the absence of physical sample, outperforming traditional and state-of-the-art models. These results underscore the effectiveness of integrating digital twin technology with zero-shot transfer learning to tackle small-sample and cross-domain challenges in bearing fault diagnosis, offering a robust paradigm for intelligent maintenance under data-scarce scenarios.
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S. Y. Xiao
Junming Hou
Muhammad Jamshaid Khan
Measurement Science and Technology
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Xiao et al. (Wed,) studied this question.
www.synapsesocial.com/papers/68d461b631b076d99fa6086a — DOI: https://doi.org/10.1088/1361-6501/ae0819